Multi-Fidelity Adaptive Sampling for Surrogate-Based Optimization and Uncertainty Quantification

被引:1
|
作者
Garbo, Andrea [1 ]
Parekh, Jigar [1 ]
Rischmann, Tilo [1 ]
Bekemeyer, Philipp [1 ]
机构
[1] Germany Aerosp Ctr DLR, Inst Aerodynam & Flow Technol, D-38108 Braunschweig, Germany
关键词
multi-fidelity sampling; surrogate-based optimization; uncertainty quantification; computational fluid dynamics; GLOBAL OPTIMIZATION; MODEL;
D O I
10.3390/aerospace11060448
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
Surrogate-based algorithms are indispensable in the aerospace engineering field for reducing the computational cost of optimization and uncertainty quantification analyses, particularly those involving computationally intensive solvers. This paper presents a novel approach for enhancing the efficiency of surrogate-based algorithms through a new multi-fidelity sampling technique. Unlike existing multi-fidelity methods which are based on a single multiplicative acquisition function, the proposed technique decouples the identification of the new infill sample from the selection of the fidelity level. The location of the infill sample is determined by leveraging the highest fidelity surrogate model, while the fidelity level used for its performance evaluation is chosen as the cheapest one within the "accurate enough" models at the infill location. Moreover, the methodology introduces the application of the Jensen-Shannon divergence to quantify the accuracy of the different fidelity levels. Overall, the resulting technique eliminates some of the drawbacks of existing multiplicative acquisition functions such as the risk of continuous sampling from lower and cheaper fidelity levels. Experimental validation conducted in surrogate-based optimization and uncertainty quantification scenarios demonstrates the efficacy of the proposed approach. In an aerodynamic shape optimization task focused on maximizing the lift-to-drag ratio, the multi-fidelity strategy achieved comparable results to standard single-fidelity sampling but with approximately a five-fold improvement in computational efficiency. Likewise, a similar reduction in computational costs was observed in the uncertainty quantification problem, with the resulting statistical values aligning closely with those obtained using traditional single-fidelity sampling.
引用
收藏
页数:20
相关论文
共 50 条
  • [41] ANOVA-based multi-fidelity probabilistic collocation method for uncertainty quantification
    Man, Jun
    Zhang, Jiangjiang
    Wu, Laosheng
    Zeng, Lingzao
    ADVANCES IN WATER RESOURCES, 2018, 122 : 176 - 186
  • [42] A multi-fidelity RBF surrogate-based optimization framework for computationally expensive multi-modal problems with application to capacity planning of manufacturing systems
    Jin Yi
    Yichi Shen
    Christine A. Shoemaker
    Structural and Multidisciplinary Optimization, 2020, 62 : 1787 - 1807
  • [43] Multi-Fidelity Design Optimization under Epistemic Uncertainty
    Hou, Liqiang
    Tan, Wei
    Ma, Hong
    2016 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2016, : 4452 - 4459
  • [44] Enhanced multi-fidelity modeling for digital twin and uncertainty quantification
    Desai, Aarya Sheetal
    Navaneeth, N.
    Adhikari, Sondipon
    Chakraborty, Souvik
    PROBABILISTIC ENGINEERING MECHANICS, 2023, 74
  • [45] Surrogate-based optimization with adaptive sampling for microfluidic concentration gradient generator design
    Yang, Haizhou
    Hong, Seong Hyeon
    ZhG, Rei
    Wang, Yi
    RSC ADVANCES, 2020, 10 (23) : 13799 - 13814
  • [46] Adaptive Latin Hypercube Sampling for a Surrogate-Based Optimization with Artificial Neural Network
    Borisut, Prapatsorn
    Nuchitprasittichai, Aroonsri
    Zhang, Jie
    Feng, Xiao
    Yang, Minbo
    PROCESSES, 2023, 11 (11)
  • [47] A Novel Multi-Fidelity Surrogate for Efficient Turbine Design Optimization
    Wang, Qineng
    Song, Liming
    Guo, Zhendong
    Li, Jun
    Feng, Zhenping
    JOURNAL OF TURBOMACHINERY-TRANSACTIONS OF THE ASME, 2024, 146 (04):
  • [48] Multi-fidelity uncertainty quantification of particle deposition in turbulent flow
    Yao, Yuan
    Huan, Xun
    Capecelatro, Jesse
    JOURNAL OF AEROSOL SCIENCE, 2022, 166
  • [49] ADAPTIVE SURROGATE-BASED MULTI-DISCIPLINARY OPTIMIZATION FOR VANE CLUSTERS
    Arsenyev, Ilya
    Duddeck, Fabian
    Fischersworring-Bunk, Andreas
    ASME TURBO EXPO: TURBINE TECHNICAL CONFERENCE AND EXPOSITION, 2015, VOL 2C, 2015,
  • [50] Parallel multi-objective Bayesian optimization approaches based on multi-fidelity surrogate modeling
    Lin, Quan
    Hu, Jiexiang
    Zhou, Qi
    AEROSPACE SCIENCE AND TECHNOLOGY, 2023, 143